Date
Publisher
arXiv
Despite the development of various AI systems to support learning in various
domains, AI assistance for art appreciation education has not been extensively
explored. Art appreciation, often perceived as an unfamiliar and challenging
endeavor for most students, can be more accessible with a generative AI enabled
conversation partner that provides tailored questions and encourages the
audience to deeply appreciate artwork. This study explores the application of
multimodal large language models (MLLMs) in art appreciation education, with a
focus on developing LLaVA-Docent, a model designed to serve as a personal tutor
for art appreciation. Our approach involved design and development research,
focusing on iterative enhancement to design and develop the application to
produce a functional MLLM-enabled chatbot along with a data design framework
for art appreciation education. To that end, we established a virtual dialogue
dataset that was generated by GPT-4, which was instrumental in training our
MLLM, LLaVA-Docent. The performance of LLaVA-Docent was evaluated by
benchmarking it against alternative settings and revealed its distinct
strengths and weaknesses. Our findings highlight the efficacy of the MMLM-based
personalized art appreciation chatbot and demonstrate its applicability for a
novel approach in which art appreciation is taught and experienced.
What is the application?
Who is the user?
Why use AI?
Study design
